Aerodynamic Interference Mechanisms and Optimization of Two-Dimensional Tandem Airfoils Based on a Bayesian Optimization Framework
Abstract
1. Introduction
2. Computational Methodology and Verification
2.1. Computational Domain and Meshing Strategy
2.2. Numerical Setup and Boundary Conditions
2.3. Verification and Experimental Comparison
2.3.1. Mesh Independence Study
2.3.2. Experimental Comparison
3. Surrogate-Assisted Optimization Framework
3.1. Parametric Design Space and Objective Definition
3.2. Robust Design of Experiments via LHS
3.3. Overview of the Initial CFD Database
3.4. Bayesian Optimization Methodology
3.4.1. The Bayesian Optimization Loop
3.4.2. Gaussian Process Surrogate Modeling and Accuracy Assessment
3.4.3. Acquisition Function: Expected Improvement
4. Results and Discussion
4.1. Global Sensitivity Analysis of Design Variables
4.2. Optimization Trajectory and Optimal Configurations
4.3. Mechanism of Mode-Switching in Aerodynamic Interference
4.3.1. Close-Coupled Configuration ()
4.3.2. Distant-Coupled Configuration ()
5. Conclusions
- Determination of the Interference Mode Boundary: Global sensitivity analysis and optimization results demonstrate that the longitudinal separation () is the core geometric parameter dictating the aerodynamic interference characteristics of tandem airfoils. Utilizing as the critical threshold, the aerodynamic interference mechanism of the system exhibits a distinct “mode switching” phenomenon.
- Close-Coupled Synergistic Lift Enhancement Mode: Within the close-coupled regime characterized by small separations, robust mutual induction exists between the fore and rear airfoils. The upwash effect from the rear airfoil significantly increases the effective angle of attack of the fore airfoil and tilts its aerodynamic force vector forward, thereby generating a unique thrust component (manifested as a negative drag coefficient for the fore airfoil). Concurrently, by selecting a negative optimal angle of attack difference, the optimized configuration exploits the slot acceleration effect to inject energy into the boundary layer on the upper surface of the rear airfoil, effectively delaying rear airfoil stall.
- Distant-Coupled Decoupled Compensation Mode: As the separation increases into the distant-coupled regime, the system degenerates into a unidirectional interference dominated by the fore airfoil wake downwash. The downwash flow field generated by the fore airfoil significantly diminishes the effective angle of attack of the rear airfoil. To sustain the lift contribution, the optimization strategy transitions towards decoupling; specifically, it necessitates the physical increment of the rear airfoil’s installation angle by imposing a larger positive angle of attack difference to passively compensate for the aerodynamic loss in the effective angle of attack.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
Abbreviations
| UAVs | Unmanned aerial vehicles |
| eVTOL | Electric vertical takeoff and landing |
| PLIF | Planar laser-induced fluorescence |
| DNS | Direct numerical simulation |
| CFD | Computational fluid dynamics |
| MFDNN | Multi-fidelity deep neural network |
| BO | Bayesian optimization |
| LHS | Latin hypercube sampling |
| GP | Gaussian process |
| URANS | Unsteady Reynolds-averaged Navier–Stokes |
| SST | Shear stress transport |
| MCS | Monte Carlo simulation |
| SE | Squared exponential |
| PI | Probability of improvement |
| EI | Expected improvement |
| UCB | Upper confidence bound |
| CDF | Cumulative distribution function |
| Probability density function | |
| GSA | Global sensitivity analysis |
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| Parameter | Symbol | Range |
|---|---|---|
| Longitudinal Separation | [1, 10] | |
| Vertical Separation | [−1, 1] | |
| Forewing Angle of Attack | [14°, 20°] | |
| Angle of Attack Difference | [−5°, 5°] |
| Aerodynamic Coefficient | Maximum | Minimum | Mean | Mean Absolute |
|---|---|---|---|---|
| 3.40 × 10−8 | −7.39 × 10−8 | −5.71 × 10−10 | 6.08 × 10−9 | |
| 2.92 × 10−8 | −4.49 × 10−8 | −6.19 × 10−10 | 6.79 × 10−9 | |
| 5.11 × 10−8 | −1.21 × 10−7 | −1.55 × 10−9 | 9.47 × 10−9 | |
| 3.14 × 10−8 | −6.46 × 10−8 | −7.73 × 10−10 | 6.82 × 10−9 | |
| 2.20 × 10−8 | −2.14 × 10−7 | 3.13 × 10−8 | 5.86 × 10−8 | |
| 5.65 × 10−8 | −1.73 × 10−7 | −2.01 × 10−9 | 9.11 × 10−9 |
| Aerodynamic Coefficient | Maximum | Minimum | Mean | Mean Absolute |
|---|---|---|---|---|
| 5.95 × 10−2 | −3.46 × 10−2 | 3.57 × 10−3 | 1.81 × 10−2 | |
| 3.23 × 10−2 | −5.19 × 10−2 | −2.01 × 10−4 | 2.25 × 10−2 | |
| 3.80 × 10−2 | −5.85 × 10−2 | −5.43 × 10−4 | 1.82 × 10−2 | |
| 3.02 × 10−2 | −5.66 × 10−2 | −5.91 × 10−3 | 2.51 × 10−2 | |
| 3.33 × 10−2 | −4.75 × 10−2 | −5.12 × 10−3 | 2.84 × 10−2 | |
| 2.53 × 10−2 | −4.29 × 10−2 | −2.22 × 10−3 | 2.64 × 10−2 |
| Case Number | Search Target Constraint () | |||||
|---|---|---|---|---|---|---|
| 111 | [1.0, 1.5) | 1.0017 | −0.7394 | 16.5193 | −1.3188 | 3.6224 |
| 112 | [1.5, 2.5) | 2.0009 | −0.9982 | 15.1432 | 0.9208 | 3.4933 |
| 113 | [2.5, 3.5) | 3.0006 | −0.9961 | 14.0871 | 2.4648 | 3.6171 |
| 114 | [3.5, 4.5) | 4.0000 | −0.9972 | 14.1460 | 2.3096 | 3.5521 |
| 115 | [4.5, 5.5) | 4.5051 | −0.9998 | 14.0063 | 2.5240 | 3.5239 |
| 116 | [5.5, 6.5) | 6.0031 | 0.9858 | 14.2870 | 2.8796 | 3.5563 |
| 117 | [6.5, 7.5) | 6.9991 | −0.9670 | 14.0206 | 2.7101 | 3.5123 |
| 118 | [7.5, 8.5) | 7.9994 | −0.9640 | 14.5294 | 2.9864 | 3.5877 |
| 119 | [8.5, 9.5) | 9.0014 | 0.9963 | 14.1499 | 3.3237 | 3.4668 |
| 120 | [9.5, 10.0] | 9.9987 | 0.9954 | 14.0313 | 3.9572 | 3.4947 |
| Case Type | Parameter | Optimal Value (Raw) | Regularized Value |
|---|---|---|---|
| Close-Coupled (Case 122) | 1.0017 | 1 | |
| −0.7394 | −0.74 | ||
| −1.3188 | −1.3 | ||
| Distant-Coupled (Case 123) | 6.9991 | 7 | |
| −0.9670 | −1 | ||
| 2.7101 | 2.7 |
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Gong, H.; Li, J.; Xia, T.; Si, H.; Dong, H. Aerodynamic Interference Mechanisms and Optimization of Two-Dimensional Tandem Airfoils Based on a Bayesian Optimization Framework. Appl. Sci. 2026, 16, 5145. https://doi.org/10.3390/app16105145
Gong H, Li J, Xia T, Si H, Dong H. Aerodynamic Interference Mechanisms and Optimization of Two-Dimensional Tandem Airfoils Based on a Bayesian Optimization Framework. Applied Sciences. 2026; 16(10):5145. https://doi.org/10.3390/app16105145
Chicago/Turabian StyleGong, Haijun, Jiayi Li, Tianyu Xia, Haiqing Si, and Hao Dong. 2026. "Aerodynamic Interference Mechanisms and Optimization of Two-Dimensional Tandem Airfoils Based on a Bayesian Optimization Framework" Applied Sciences 16, no. 10: 5145. https://doi.org/10.3390/app16105145
APA StyleGong, H., Li, J., Xia, T., Si, H., & Dong, H. (2026). Aerodynamic Interference Mechanisms and Optimization of Two-Dimensional Tandem Airfoils Based on a Bayesian Optimization Framework. Applied Sciences, 16(10), 5145. https://doi.org/10.3390/app16105145

